Machine learning techniques deals with, among other things, pattern recognition in large amounts of data to identify trends and possible events in the future regarding a given topic of interest. Machine learning methods are useful for addressing challenges in and creating new benefits for organisations. This paper looks at how machine learning can contribute to manage projects effectively. Many organisations apply the concept of project. A part of them are purely project-based organisations, and a part of them carry out projects in addition to their mass-production activities and permanent operations. Within the realm of project management, this paper sets its focus on studying the role of machine learning in handling unexpected events and ...
Review on the application of machine learning techniques in construction project risk managemen
In the digital age, more people are getting connected and using digital technology than ever before....
The thesis aims to investigate the implications of software defect predictions through machine learn...
Machine learning techniques deals with, among other things, pattern recognition in large amounts of ...
Although prior literature suggested that machine learning (ML) development can suffer strongly from ...
Project management planning and assessment are of great significance in project performance activiti...
Although prior literature suggested that machine learning (ML) development can suffer strongly from ...
Despite the application of project management tools and techniques in projects worldwide, still a la...
In this paper, we attempt to provide an overview of the full extent of early warning detection appro...
It is a major challenge for project organizations to react sufficiently quickly to the identified ea...
This study aims to understand early signs’ sensemaking relevance to identifying unknown unknowns on ...
This paper gives initial results from a partially PMI -funded study looking at why methods fail to p...
Most of the critical decisions are made in the front-end stage of projects. This is due to high leve...
The emergence of Concurrent Engineering has caused growing demands on project management. The classi...
Despite more than seven decades of IT history since the inception andmany methodologies and systems...
Review on the application of machine learning techniques in construction project risk managemen
In the digital age, more people are getting connected and using digital technology than ever before....
The thesis aims to investigate the implications of software defect predictions through machine learn...
Machine learning techniques deals with, among other things, pattern recognition in large amounts of ...
Although prior literature suggested that machine learning (ML) development can suffer strongly from ...
Project management planning and assessment are of great significance in project performance activiti...
Although prior literature suggested that machine learning (ML) development can suffer strongly from ...
Despite the application of project management tools and techniques in projects worldwide, still a la...
In this paper, we attempt to provide an overview of the full extent of early warning detection appro...
It is a major challenge for project organizations to react sufficiently quickly to the identified ea...
This study aims to understand early signs’ sensemaking relevance to identifying unknown unknowns on ...
This paper gives initial results from a partially PMI -funded study looking at why methods fail to p...
Most of the critical decisions are made in the front-end stage of projects. This is due to high leve...
The emergence of Concurrent Engineering has caused growing demands on project management. The classi...
Despite more than seven decades of IT history since the inception andmany methodologies and systems...
Review on the application of machine learning techniques in construction project risk managemen
In the digital age, more people are getting connected and using digital technology than ever before....
The thesis aims to investigate the implications of software defect predictions through machine learn...